This study aims to develop ensemble machine learning (ML) models for estimating the peak floor acceleration and maximum top drift of steel moment frames. For this purpose, random forest, adaptive boosting, gradient boosting regression tree (GBRT), and extreme gradient boosting (XGBoost) models were considered. A total of 621 steel moment frames were analyzed under 240 ground motions using OpenSees software to generate the dataset for ML models. From the results, the GBRT and XGBoost models exhibited the highest performance for predicting peak floor acceleration and maximum top drift, respectively. The significance of each input variable on the prediction was examined using the best-performing models and Shapley additive explanations approac...
This study aims to provide an efficient and accurate machine learning (ML) approach for predicting t...
Advanced machine learning algorithms have the potential to be successfully applied to many areas of ...
Deriving the fragility curves is a key step in seismic risk assessment within the performance-based ...
This study aims to develop machine learning (ML) models that can predict the seismic responses of pl...
The damage state assessment of buildings after an earthquake is an essential and urgent task that ty...
Maximum displacement is an important engineering demand of an isolation system, including systems us...
This study developed machine learning (ML) models for predicting the peak lateral displacements of s...
Estimating ground motion characteristics at various locations as a function of fault characteristics...
The objective of this study is to develop data-driven predictive models for seismic energy dissipati...
Machine learning algorithms are used in this thesis to predict earthquake parameters for simulated a...
In this study, firstly, the behavior of a high steel frame equipped with tuned mass damper (TMD) due...
Uncertainty quantification (UQ) due to seismic ground motions variability is an important task in ri...
This article aims to discusses machine learning modelling using a dataset provided by the LANL (Los ...
In this work, we explored the feasibility of predicting the structural drift from the first seconds ...
Earthquake-induced ground motions can be altered by various factors that are associated with the cha...
This study aims to provide an efficient and accurate machine learning (ML) approach for predicting t...
Advanced machine learning algorithms have the potential to be successfully applied to many areas of ...
Deriving the fragility curves is a key step in seismic risk assessment within the performance-based ...
This study aims to develop machine learning (ML) models that can predict the seismic responses of pl...
The damage state assessment of buildings after an earthquake is an essential and urgent task that ty...
Maximum displacement is an important engineering demand of an isolation system, including systems us...
This study developed machine learning (ML) models for predicting the peak lateral displacements of s...
Estimating ground motion characteristics at various locations as a function of fault characteristics...
The objective of this study is to develop data-driven predictive models for seismic energy dissipati...
Machine learning algorithms are used in this thesis to predict earthquake parameters for simulated a...
In this study, firstly, the behavior of a high steel frame equipped with tuned mass damper (TMD) due...
Uncertainty quantification (UQ) due to seismic ground motions variability is an important task in ri...
This article aims to discusses machine learning modelling using a dataset provided by the LANL (Los ...
In this work, we explored the feasibility of predicting the structural drift from the first seconds ...
Earthquake-induced ground motions can be altered by various factors that are associated with the cha...
This study aims to provide an efficient and accurate machine learning (ML) approach for predicting t...
Advanced machine learning algorithms have the potential to be successfully applied to many areas of ...
Deriving the fragility curves is a key step in seismic risk assessment within the performance-based ...